Multiple time-series convolutional neural network for fault detection and diagnosis and empirical study in semiconductor manufacturing

被引:103
作者
Hsu, Chia-Yu [1 ]
Liu, Wei-Chen [2 ]
机构
[1] Natl Taipei Univ Technol, Dept Ind Engn & Management, Taipei 10608, Taiwan
[2] Yuan Ze Univ, Dept Informat Management, Taoyuan, Taiwan
关键词
Fault detection and diagnosis; Time series classification; Deep learning; Convolutional neural network; Smart manufacturing; PRINCIPAL COMPONENT ANALYSIS; SENSOR DATA; IDENTIFICATION; CLASSIFICATION; EQUIPMENT; MODEL;
D O I
10.1007/s10845-020-01591-0
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The development of information technology and process technology have been enhanced the rapid changes in high-tech products and smart manufacturing, specifications become more sophisticated. Large amount of sensors are installed to record equipment condition during the manufacturing process. In particular, the characteristics of sensor data are temporal. Most the existing approaches for time series classification are not applicable to adaptively extract the effective feature from a large number of sensor data, accurately detect the fault, and provide the assignable cause for fault diagnosis. This study aims to propose a multiple time-series convolutional neural network (MTS-CNN) model for fault detection and diagnosis in semiconductor manufacturing. This study incorporates data augmentation with sliding window to generate amounts of subsequences and thus to enhance the diversity and avoid over-fitting. The key features of equipment sensor can be learned automatically through stacked convolution-pooling layers. The importance of each sensor is also identified through the diagnostic layer in the proposed MTS-CNN. An empirical study from a wafer fabrication was conducted to validate the proposed MTS-CNN and compare the performance among the other multivariate time series classification methods. The experimental results demonstrate that the MTS-CNN can accurately detect the fault wafers with high accuracy, recall and precision, and outperforms than other existing multivariate time series classification methods. Through the output value of the diagnostic layer in MTS-CNN, we can identify the relationship between each fault and different sensors and provider valuable information to associate the excursion for fault diagnosis.
引用
收藏
页码:823 / 836
页数:14
相关论文
共 45 条
[1]  
Bishop ChristopherM., 1995, Neural Networks for Pattern Recognition, V1st
[2]  
BOUTHILLIER X, 2015, ARXIV150608700
[3]   A hybrid information model based on long short-term memory network for tool condition monitoring [J].
Cai, Weili ;
Zhang, Wenjuan ;
Hu, Xiaofeng ;
Liu, Yingchao .
JOURNAL OF INTELLIGENT MANUFACTURING, 2020, 31 (06) :1497-1510
[4]   Multiblock principal component analysis based on a combined index for semiconductor fault detection and diagnosis [J].
Cherry, GA ;
Qin, SJ .
IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING, 2006, 19 (02) :159-172
[5]   Semiconductor fault detection and classification for yield enhancement and manufacturing intelligence [J].
Chien, Chen-Fu ;
Hsu, Chia-Yu ;
Chen, Pei-Nong .
FLEXIBLE SERVICES AND MANUFACTURING JOURNAL, 2013, 25 (03) :367-388
[6]   Condition monitoring and diagnostics in automatic machines: Comparison of vibration analysis techniques [J].
Dalpiaz, G ;
Rivola, A .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 1997, 11 (01) :53-73
[7]  
Faloutsos Christos., 1994, ACM SIGMOD Record, V23, P419
[8]   Wafer fault detection and key step identification for semiconductor manufacturing using principal component analysis, AdaBoost and decision tree [J].
Fan, Shu-Kai S. ;
Lin, Shou-Chih ;
Tsai, Pei-Fang .
JOURNAL OF INDUSTRIAL AND PRODUCTION ENGINEERING, 2016, 33 (03) :151-168
[9]  
Gertler J, 2017, FAULT DETECTION DIAG
[10]  
Goldin D. Q., 1995, Principles and Practice of Constraint Programming - CP '95. First International Conference, CP'95. Proceedings, P137